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Download Ch.15 – Probability Rules! (I Totally Agree! )
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• Venn Diagram – A visual display of a sample space; very helpful when looking at several variables at the same time! Deal or No Deal! • Suppose you are a contestant on Deal or No Deal… You have 20 briefcases to select from labeled with the numbers 1 – 20 (This is your sample space!) • Each briefcase has an equally likely chance of selection. • Let’s figure out a couple of probabilities to get started… • P(A) = _(count of desired outcomes)_ (count of all possible outcomes) 1 2 3 4 5 9 13 17 6 10 14 18 15 19 16 20 7 11 8 12 DEAL OR NO DEAL SAMPLE SPACE! General Addition Rule • For any two events A & B, the probability of A or B is P( A B ) P( A) P( B ) P( A B ) Ex) Police report that 78% of drivers stopped on suspicion of drunk driving are given a breath test, 36% a blood test, and 22% both tests. 1) What is the probability that the suspect is given a test? 2) What is the probability that the suspect gets either a blood test or a breath test but NOT both? P(A or B but NOT both) = 3) What is the probability that the suspect gets neither test? P(neither test) = 1 – p(either test) Conditional Probabilities • Do you remember contingency tables? Two psychologist s surveyed 478 children in grades 4,5, and 6 in elementary schools in Michigan. They stratified their sample, drawing roughly 1/3 from rural, 1/3 from suburban, and 1/3 from urban schools. They asked the students whether their primary goal was to get good grades, to be popular, or to be good at sports. One questions of interest was whether boys and girls at this age had similar goals. Grades Popular Sports Total Boy 117 50 60 227 Girl 130 91 30 251 Total 247 141 90 478 1) What is the probability of selecting a girl? 2) What is the probability of selecting a girl whose goal is to be popular? P(girl popular) = 3)The probability of selecting a student whose goal is to excel at sports. P(sports) = • Conditional Probability – “the probability of B given A” • To find the probability of B given A, you restrict your sample space to just those outcomes in A before finding the probability of B. What if we are given the information that the selected student is a girl? Would that change the probability that the selected student’s goal is sports? When we restrict our focus to girls, we look only at the girls’ row of the table which gives the conditional distribution of goals given “girls”. p(sports|girl) = Formally, we write… P( A B ) P( B A) P( A) Now let’s look at the probabilities from our last example and see how it works using the actual probabilities instead of looking at just the counts. General Multiplication Rule • By rearranging the equation for conditional probability, we have for any two events A & B P( A B ) P( A) P( B A) (The events do not have to be independent.) Independence: Events A and B are independent whenever P(B|A) = P(B) 1)Is the probability of having good grades as a goal independent of the sex of the responding student? P(grades|girl) = P(grades) 2) What about choosing success in sports? Does P(sports|boy) = P(sports)? Because these probabilities aren’t equal, we can be pretty sure that choosing success in sports as a goal is not independent of the student’s sex. It appears that succeeding in sports is more important to boys.